In this paper, a new data-driven method is demonstrated for real-time neutral density estimation via model–data fusion in quasi-physical ionosphere–thermosphere models. The proposed method has two main components: 1) the use of a quasi-physical reduced-order model (ROM) to represent the dynamics of the upper atmosphere, and 2) the calibration of the ROM coefficients using satellite position measurements. The ROM is developed using dynamic mode decomposition with control. Previous work required direct density measurements (accelerometer-derived densities), and the current work extends this approach to satellite position measurements. This work is a new approach to dynamic calibration of the atmosphere. This work proposes combining the orbit ...
Accurate forecasts of thermosphere densities, realistic calculation of aerodynamic drag, and propaga...
ability to measure the surface forces present. The total density can be easily derived from this mea...
Book Chapter "Inference of hidden states by coupled thermosphere-ionosphere data assimilation: Appli...
In this paper, a new data-driven method is demonstrated for real-time neutral density estimation via...
Inaccurate estimates of the thermospheric density are a major source of error in low Earth orbit pre...
Improved thermospheric neutral density models are required for the reduction of orbit prediction err...
An accurate estimation of the Thermospheric Neutral Density (TND) is important for predicting the or...
The uncertainty on Thermospheric Mass Density (TMD), as derived from atmospheric models, can reach e...
The uncertainty in thermospheric neutral density (TND) estimates is one of the largest and persisten...
Atmospheric drag, which can be inferred from orbit information of low-Earth orbiting (LEO) satellite...
A method is defined for simultaneous atmospheric density calibration and satellite orbit determinati...
[1] This paper presents an application of ensemble Kalman filtering (EnKF) to a general circulation ...
AbstractAtmospheric drag, which can be inferred from orbit information of low-Earth orbiting (LEO) s...
The thermosphere is located above the mesosphere and below the exosphere, and its highly ionized sta...
Accurate estimation of thermosphere mass density is critical to determining how satellite orbits evo...
Accurate forecasts of thermosphere densities, realistic calculation of aerodynamic drag, and propaga...
ability to measure the surface forces present. The total density can be easily derived from this mea...
Book Chapter "Inference of hidden states by coupled thermosphere-ionosphere data assimilation: Appli...
In this paper, a new data-driven method is demonstrated for real-time neutral density estimation via...
Inaccurate estimates of the thermospheric density are a major source of error in low Earth orbit pre...
Improved thermospheric neutral density models are required for the reduction of orbit prediction err...
An accurate estimation of the Thermospheric Neutral Density (TND) is important for predicting the or...
The uncertainty on Thermospheric Mass Density (TMD), as derived from atmospheric models, can reach e...
The uncertainty in thermospheric neutral density (TND) estimates is one of the largest and persisten...
Atmospheric drag, which can be inferred from orbit information of low-Earth orbiting (LEO) satellite...
A method is defined for simultaneous atmospheric density calibration and satellite orbit determinati...
[1] This paper presents an application of ensemble Kalman filtering (EnKF) to a general circulation ...
AbstractAtmospheric drag, which can be inferred from orbit information of low-Earth orbiting (LEO) s...
The thermosphere is located above the mesosphere and below the exosphere, and its highly ionized sta...
Accurate estimation of thermosphere mass density is critical to determining how satellite orbits evo...
Accurate forecasts of thermosphere densities, realistic calculation of aerodynamic drag, and propaga...
ability to measure the surface forces present. The total density can be easily derived from this mea...
Book Chapter "Inference of hidden states by coupled thermosphere-ionosphere data assimilation: Appli...